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A Clustering Rule Based Approach for Classification Problems

机译:基于聚类规则的分类问题方法

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Predictive models, such as rule based classifiers, often have difficulty with incomplete data (e.g., erroneous/ missing values). So, this work presents a technique used to reduce the severity of the effects of missing data on the performance of rule base classifiers using divisive data clustering. The Clustering Rule based Approach (CRA) clusters the original training data and builds a separate rule based model on the cluster wise data. The individual models are combined into a larger model and evaluated against test data. The effects of the missing attribute information for ordered and unordered rule sets is evaluated and the collective model (CRA) is experimentally used to show that its performance is less affected than the traditional model when the test data has missing attribute values, thus making it more resilient and robust to missing data.
机译:诸如基于规则的分类器之类的预测模型通常难以处理不完整的数据(例如,错误/缺失的值)。因此,这项工作提出了一种技术,该技术可通过使用分割数据聚类来降低丢失数据对规则库分类器性能的影响的严重性。基于聚类规则的方法(CRA)对原始训练数据进行聚类,并在聚类的数据上构建基于规则的单独模型。将各个模型组合成一个更大的模型,并根据测试数据进行评估。对有序和无序规则集的缺失属性信息的影响进行了评估,并通过实验使用集合模型(CRA)表明,当测试数据具有缺失的属性值时,其性能比传统模型受到的影响要小,从而使其更具性能对丢失的数据具有弹性和健壮性。

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